2021
DOI: 10.48550/arxiv.2109.13081
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Semi-Autonomous Teleoperation via Learning Non-Prehensile Manipulation Skills

Abstract: In this paper, we present a semi-autonomous teleoperation framework for a pick-and-place task using an RGB-D sensor. In particular, we assume that the target object is located in a cluttered environment where both prehensile grasping and non-prehensile manipulation are combined for efficient teleoperation. A trajectory-based reinforcement learning is utilized for learning the non-prehensile manipulation to rearrange the objects for enabling direct grasping. From the depth image of the cluttered environment and… Show more

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